@inproceedings{bfde693efa9244c096c8c9716a084e03,
title = "SemRevRec: A recommender system based on user reviews and linked data",
abstract = "Traditionally, recommender systems exploit user ratings to infer preferences. However, the growing popularity of social platforms has encouraged users to write textual reviews about liked items. These reviews represent a valuable source of non-Trivial information that could improve users' decision processes. In this paper we propose a novel recommendation approach based on the semantic annotation of entities mentioned in user reviews and on the knowledge available in the Web of Data. We compared our recommender system with two baseline algorithms and a state-of-The-Art Linked Data based approach. Our system provided more diverse recommendations with respect to the other techniques considered, while obtaining a better accuracy than the Linked Data based method.",
author = "Iacopo Vagliano and Diego Monti and Maurizio Morisio",
note = "Funding Information: This work was supported by the EU{\textquoteright}s Horizon 2020 programme under grant agreement H2020-693092 MOVING.; 2017 Poster Track of the 11th ACM Conference on Recommender Systems, Poster-Recsys 2017 ; Conference date: 28-08-2017",
year = "2017",
language = "English",
volume = "1905",
series = "CEUR Workshop Proceedings",
publisher = "CEUR-WS",
booktitle = "Poster Track of the 11th ACM Conference on Recommender Systems, Poster-Recsys 2017",
}